State of the Art in Data Management for Precision Medicine & Genomics March 8, 2017 2 pm 3 pm ET
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Agenda Welcome and Introductions Claudia Ellison, Program Director, ehealth Initiative Discussion & Comments Virginia Balcom, Vice President, PHEMI Systems Jim Buntrock, Vice Chair of Information Management and Analytics, Mayo Clinic Josh Peterson, MD, MPH, Vanderbilt University School of Medicine Paul Terry, MD,CEO and CTO, PHEMI Systems Questions & Answers
Overview of ehealth Initiative Since 2001, ehealth Initiative (c6) and the Foundation for ehealth Initiative (c3) have conducted research, education and advocacy to demonstrate the value of technology and innovation in health. Serve as the industry leader convening executives from multistakeholder groups to identify best practices to transform care through use of health IT The missions of the two organizations are the same: to drive improvement in the quality, safety, and efficiency of healthcare through information and technology. Our work is centered around the 2020 Roadmap. The primary objective of the 2020 Roadmap is to craft a multi-stakeholder solution to enable coordinated efforts by public and private sector organizations to transform care delivery through data exchange and health IT. 4
Roadmap to Transforming Care OUTPUTS & RECOMMEND ATIONS Guidance, Education, Reports RESEARCH Information Gathering, Surveys, Interviews CONVENE - Exec Roundtables, Committees, Webinars, Workgroups 5
ehealth - Convening Executives to Research & Identify Best Practices Data Analytics Data Access and Privacy Interoperability Patient and Provider Technology Adoption 6
ehi Member Meeting & Executive Networking March 21 23, 2017 House of Sweden, 2900 K Street, N.W., WDC Together Facing the Challenges of Change. ehealth Initiative s 2017 Annual Conference & Member Meetings will bring together the most influential leaders from across the healthcare spectrum to discuss critical issues related to the use of data and technology to improve healthcare for all Americans. www.ehidc.org/events
State of the Art in Data Management for Precision Medicine & Genomics An ehi research report highlighting the issues, strategies, and challenges being faced by innovators in precision medicine and genomics. The findings shared in this report provide insight on how clinical and genetic data is used and managed, as well as the challenges providers face in genomics research and precision medicine. Virginia Balcom PHEMI Systems vbalcom@phemi.com 8 Copyright 2017 PHEMI. All rights reserved.
Agenda Highlights from the Report Precision Medicine Initiatives at the Mayo Clinic Precision Medicine Initiatives at Vanderbilt University Common data challenges in Precision Medicine Questions and Answers 9 Copyright 2017 PHEMI. All rights reserved.
Our Guest Speakers Jim Buntrock Vice Chair of Information Management and Analytics Mayo Clinic Josh Peterson, MD, MPH, Vanderbilt University School of Medicine Dr. Paul Terry CEO & CTO PHEMI Systems 10 Copyright 2017 PHEMI. All rights reserved.
State of the Art in Data Management for Precision Medicine & Genomics The Study Providers were identified based on criteria that assesses their involvement in genomics research and use Interviewed by ehi to share insights on how they are using big data, their involvement with genomics and precision medicine, and what challenges they are facing in managing, storing, using and analyzing the data. Study Objectives To understand the state of data management in precision medicine from research to clinical implementation To understand if organizations are adopting newer technologies (Hadoop, others) to handle the data demands of precision medicine 11 Copyright 2017 PHEMI. All rights reserved.
State of the Art in Data Management for Precision Medicine & Genomics Study Findings Innovators leveraging clinical and genomics data to strengthen core competency of caring for the patient All of those interviewed are interested in incorporating precision medicine to bring genomics to the point of care Providers are just starting to integrate genomics into clinical practice Providers understand that simply collecting genomic data is inadequate and that to derive value from it, they must turn the data into knowledge that informs clinical decisions and allows them to deliver personalized care. 12 Copyright 2017 PHEMI. All rights reserved.
State of the Art in Data Management for Precision Medicine & Genomics Study Findings Diverse Use Cases Emerging as Pioneering Providers find new ways to derive value from genomic data Genetic underpinnings of disorders, using DNA, plasma, and serum samples from more than 40,000 patients Predict patients likely to develop cancer for early intervention D3b Center for Data-Driven Discovery in Biomedicine addressing pediatric cancer Use adverse drug reactions to infer associations between metabolic pathways, drugs, and acquired disorders medical devices and monitors Precision Medicine Initiative Cohort 1 million+ volunteers Inform medication prescription, based on relationship between adverse events and genetic variants Use age-related macular degeneration risk factors for prevention Moon Shots >165 immunotherapy clinical trials Matching genes to drugs targeted to that gene for oncology decision support Analyzing very large datasets to identify clinically significant genetic variations Intermediate decision support with gene annotations Immunotherapy at proteomic level Reporting, benchmarking, predictive analytics
State of the Art in Data Management for Precision Medicine & Genomics Study Findings The Top Data Management Challenges Providers are Facing Increasing participation in clinical trials Moving from competing to collaborating sharing data Exploring new data storage solutions, such as cloud Sufficient Data Store & manage the volume Usability Accessibility Acquiring data in a ready state for analysis Extracting value from unstructured data, non-clinical data, and leveraging metadata Balancing privacy, appropriate deidentification, and clinical and research needs Managing risk, management, privacy, and security Making data available for real-time clinical support Adopting new technologies: Hadoop Managing patient registries Manage the breadth Knowledge Clinical Integration Shortage of specialized skills, especially data science skills Better tools needed to make the most use of big data. Interoperability with EMRs 14 Copyright 2017 PHEMI. All rights reserved.
Data Management and Analytic Strategies Mayo Clinic Center for Individualized Medicine ehealth Initiative James Buntrock Vice Chair, Information Technology Mayo Clinic 3/8/2017
Disclosures Mayo Clinic works with several health information technology companies Mayo Clinic is evaluating PHEMI technology About me, I am a technologist. I am not a clinician, geneticist, bioinformatician, or molecular biologist. 16
The Center for Individualized Medicine will integrate, develop and deploy new individualized medicine products and services that continually differentiate our practice for every life Mayo touches. 2013 MFMER slide- 17
Translational Programs From Promise to Practice Microbiome Epigenomics Clinomics Pharmacogenomics Biomarker Discovery 18
19 Need for a robust Infrastructure Biobank & Biorepositories Biomedical Ethics Education Sequencing Biomedical Informatics Information Technology 19
Genomics Processing High Level Sequencing Primary Secondary Tertiary Interpretation/ Reporting Data Generation Base calling QC Assembly Alignment Annotations Annotations Visualization Statistics Research Clinical IT Infrastructure/Data Management (Storage, Workflow, Compute, Interfaces, Delivery)
Data Management Phenotype Genomic Variation Genomic Annotation Mayo Knowledge Demographics Medication Diagnosis Specimen DNA RNA Protein OMIM HGMD TCGA 1000Genome MxD Outcomes Age Gender SNV CNV INDELs Translocations Methylation Expression Splice-site Fusion genes mirna snrna Confirmed Pathogenic Variant Frequency Previous interpretations
Aspects of Clinical Application of Genomics Patient / Provider Centered Specialty Clinics Per Visit/Test Functionality Visualization for Provider and Patient Multi-Provider Role (Generalist, Geneticist, Oncologist, Specialist) Focus deployment Big Data / Large Scale Data Management Large Data sets Storage and management of trillions of variants Cross-patient inquiry Lab Management Analytic Dashboard Biomarker Discovery System of Record Unique Service Delivery
Advanced Diagnostic Individualized Medicine Clinic Drug Targets Bringing it all together Patient Treatment Literature OMIM Therapeutic Targets Family History Diagnosis Others like me DNA Epi RNA Patient Outcomes
Systems of Genomic Medicine: Pharmacogenomics at VUMC State of the Art in Data Management for Precision Medicine and Genomics Josh F. Peterson, MD, MPH March 8th, 2017 Associate Professor Department of Biomedical Informatics Department of Medicine Vanderbilt University Medical Center No conflict of interest disclosures
Managing Wave of Genomic Data
Sequence Data Health System Reportable / Actionable? NO YES EMR PHR P r o m o t e d Genomic Escrow CDS Learning Health System
Clinical Application Genetic Risk Genotyping PREDICT Pharmacogenomics Model Target Clinics Prognostic Flag for Testing Preemptively Tested Reactive/Indication Testing Genotyped for PREDICT CYP2C19 Variant TPMT Variant VKORC1 + CYP2C9 CYP3A5 Variant Has genetic risk variant Clopidogrel Thiopurines Warfarin Tacrolimus Exposed to new or recent prescription
Clinical Workflow VUMC returning patient Male, age 60 BMI = 34 Prior history of hypertension and atrial fibrillation PREDICT Test During clinic appointment, provider is notified in EMR that patient is likely to be prescribed target drug within 3 years and thus benefit from genotypetailored prescribing. PREDICT test ordered and genotype results delivered to EMR Clopidogrel sensitivity: Poor Metabolizer Reduced Antiplatelet Effect gene result CYP2C19 *2/*3 1 year later Poor Metabolizer When writing Rx for clopidogrel, cardiologist caring for a patient after a stent is alerted in the e- prescribing system that patient is a poor metabolizer. Patient leaves clinic appointment with Rx for appropriate drug.
Nomenclature and Interpretations Tacrolimus and CYP3A5 interaction Gene Nucleotide variation a : Effect on CYP3A5 protein Result CYP3A5 6986A>G 31611C>T Splicing defect Genotype & Phenotype CYP3A5 *3/*3 Tacrolimus Poor metabolizer Interpretation This result signifies that the patient has two copies of a non-functional allele (*3). Patients with this genotype are expected to require standard tacrolimus dosing. Please consult a clinical pharmacist for more specific dosing information. CPIC Guideline - Tacrolimus
Antiplatelet Drug Selection Within E-Prescribing and Based on CYP2C19 variant https://cdskb.org/
Warfarin Dosing Advisor
PREDICT Results in the Patient Portal
Genomic Medicine Case Studies https://emerge.mc.vanderbilt.edu
State of the Art in Data Management for Precision Medicine & Genomics Dr. Paul Terry CEO & CTO PHEMI Systems 35 Copyright 2017 PHEMI. All rights reserved.
State of the Art in Data Management for Precision Medicine & Genomics ehi research report highlighting the issues, strategies, and challenges being faced by innovators in precision medicine and genomics The report will be sent to all registered attendees after the webinar. Report Sponsored by 36 Copyright 2017 PHEMI. All rights reserved.
Integrating a Wide Variety of Heterogeneous Data Molecular You Solution Early warning system Prevent, delay, mitigate Quarterly molecular screening Grow to 25,000 patients 15+ varied data sources Integrate omics with clinical data Longitudinal study PHEMI Copyright 2017
Ability to Extract Data from Complex Data Sources Semi-Structured XML Lab Results Reader Structured Name Visibility Value Glucose Non PHI 4.82 Patient PHN PHI 994-859-9326 Collection Date Non PHI 2013-02-06 Facility ID Non PHI BCB Van East Patient Name PHI Sullivan, Ian Source File Data Processing Function Analytics-Ready Digital Assets PHEMI Copyright 2017
Interactive Genomic Analytics Annotate known genetic variations using reference data sets (ClinVar, dbsnp, UCSC Known Genes) Join genotype data with clinical data collections and omics reference data Analyze data using PHEMI s Genomics API Build interactive visualization using Zeppelin notebooks Use Spark API & Machine Learning library for advanced analysis and modeling Export to R & Bioconductor or external databases 39 PHEMI Copyright 2017
Integration of Data Science Tools Predictive Modeling Risk Modeling Anomaly Detection Categorization Semantic Analysis Natural Language Processing, etc... PHEMI CONFIDENTIAL
Discussion Jim Buntrock Vice Chair of Information Management and Analytics Mayo Clinic Josh Peterson, MD, MPH, Vanderbilt University School of Medicine Dr. Paul Terry CEO & CTO PHEMI Systems
Thank you for Participating For more information about ehi and its programs and services, please go to our website at www.ehidc.org or please contact: Claudia Ellison Claudia.Ellison@ehidc.org 202-624-3280
This webinar was made possible through the generosity and support of PHEMI! Slides are available at www.ehidc.org/resources